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Python

11 months ago
import xgboost as xgb
import pandas as pd
import os
from sklearn.metrics import r2_score
from sklearn.model_selection import train_test_split
import matplotlib as mpl
import matplotlib.pyplot as plt
mpl.rcParams['font.sans-serif']=['kaiti']
pd.set_option('display.width',None)
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def hf_season(x):
list1= []
for i in range(1,13):
if x.loc[f'2021-{i}'].mean() >= x.describe()['75%']:
list1.append(i)
return list1
def season(x):
if str(x)[5:7] in ('06','07','08','12','01','02'):
return 1
else:
return 0
def month(x):
if str(x)[5:7] in ('08','09','10','12','01','02'):
return 1
else:
return 0
def normal(nd):
high = nd.describe()['75%'] + 1.5*(nd.describe()['75%']-nd.describe()['25%'])
low = nd.describe()['25%'] - 1.5*(nd.describe()['75%']-nd.describe()['25%'])
return nd[(nd<high)&(nd>low)]
data = pd.read_excel(r'C:\python-project\pytorch3\入模数据\杭州数据.xlsx',index_col='dtdate')
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data.index = pd.to_datetime(data.index,format='%Y-%m-%d')
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data = data.loc[normal(data['售电量']).index]
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# plt.plot(range(len(data['售电量']['2021':'2022'])),data['售电量']['2021':'2022'])
# plt.show()
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# print(hf_season(data.loc['2021']['售电量']))
data['month'] = data.index.strftime('%Y-%m-%d').str[6]
data['month'] = data['month'].astype('int')
data['season'] = data.index.map(season)
print(data.head(50))
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df_eval = data.loc['2022-9':'2023-9']
df_train = data.loc['2021-1':'2022-8']
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# df_train = df[500:850]
print(len(df_eval),len(df_train),len(data))
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print(data.drop(columns='city_name').corr(method='pearson')['售电量'])
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df_train = df_train[['tem_max','tem_min','24ST','rh','rh_max','prs','prs_max','prs_min','售电量','month','holiday','season']]
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# IQR = df['售电量'].describe()['75%'] - df['售电量'].describe()['25%']
# high = df['售电量'].describe()['75%'] + 1.5*IQR
# low = df['售电量'].describe()['25%'] - 1.5*IQR
# print('异常值数量:',len(df[(df['售电量'] >= high) | (df['售电量'] <= low)]))
#
# df_train = df_train[(df['售电量'] <= high) & (df['售电量'] >= low)]
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X = df_train[['tem_max','tem_min','24ST','holiday','season']]
X_eval = df_eval[['tem_max','tem_min','24ST','holiday','season']]
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y = df_train['售电量']
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print(y.describe())
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# best_goal = 1
# best_i = {}
# for i in range(400):
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x_train,x_test,y_train,y_test = train_test_split(X,y,test_size=0.2,random_state=42)
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model = xgb.XGBRegressor(max_depth=6, learning_rate=0.05, n_estimators=150)
model.fit(x_train,y_train)
y_pred = model.predict(x_test)
result_test = pd.DataFrame({'test':y_test,'pred':y_pred},index=y_test.index)
# 指标打印
print(abs(y_test - y_pred).mean() / y_test.mean())
eval_pred = model.predict(X_eval)
result_eval = pd.DataFrame({'eval':df_eval['售电量'],'pred':eval_pred},index=df_eval['售电量'].index)
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print((result_eval['eval'].sum()-result_eval['pred'].sum())/result_eval['eval'].sum())
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goal = (result_eval['eval'][-3:].sum()-result_eval['pred'][-3:].sum())/result_eval['eval'].sum()
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print('goal:',goal)
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goal2 = (result_eval['eval'][-23:].sum()-result_eval['pred'][-23:].sum())/result_eval['eval'].sum()
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print('goal2:',goal2)
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print(result_eval)
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print('r2:',r2_score(y_test,y_pred))
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# result_eval.to_csv('asda.csv',encoding='gbk')
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# if abs(goal) < best_goal:
# best_goal = abs(goal)
# best_i['best_i'] = i
# x = goal2
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# print(best_i,best_goal,x)
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# result_eval.to_csv(r'C:\Users\user\Desktop\9月各地市日电量预测结果\杭州.csv')
# with open(r'C:\Users\user\Desktop\9月各地市日电量预测结果\偏差率.txt','a',encoding='utf-8') as f:
# f.write(f'杭州月末3天偏差率{round(goal,5)},9号-月底偏差率:{round(goal2,5)}\n')
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# # 保存模型
# model.save_model('hangzhou.bin')
# loaded_model = xgb.XGBRegressor()
# loaded_model.load_model('hangzhou.bin')
# model.predict(X_eval)